A fat orthogonal search method for biological time-series analysis and system identification

M. Korenberg
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引用次数: 5

Abstract

The fast orthogonal search method is illustrated for carrying out both system identification and time-series analysis of biological processes. It is first shown how the method can be used to rapidly obtain concise and accurate difference equation models of nonlinear dynamic systems. Then it is considered how the fast orthogonal algorithm enables accurate identification of cascades of alternating dynamic linear and static nonlinear sub-systems from short data records. Finally, it is illustrated how the method achieves accurate, parsimonious sinusoidal series representations of time-series data. It is shown that the method is capable of precise detection of component frequencies in time-series heavily corrupted with noise, demonstrating finer frequency resolution than a conventional Fourier series analysis.<>
一种用于生物时间序列分析和系统识别的正交搜索方法
用快速正交搜索法对生物过程进行系统辨识和时间序列分析。首先说明了该方法如何能够快速得到简洁准确的非线性动力系统差分方程模型。然后考虑了快速正交算法如何从短数据记录中准确识别动态线性和静态非线性交替子系统的级联。最后,说明了该方法如何实现时间序列数据的精确、简洁的正弦序列表示。结果表明,该方法能够精确检测被噪声严重破坏的时间序列中的分量频率,比传统的傅立叶级数分析显示出更好的频率分辨率。
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